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Block-Constraint Robust Principal Component Analysis and its Application to Integrated Analysis of TCGA Data

机译:块约束鲁棒主成分分析及其在TCGA数据综合分析中的应用

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The Cancer Genome Atlas (TCGA) dataset provides us more opportunities to systematically and comprehensively learn some biological mechanism of cancers formation, growth and metastasis. Since TCGA dataset includes heterogeneous data, it is one of the bioinformatics bottlenecks to mine some meaningful information from them. In this paper, to improve the performance of Robust Principal Component Analysis (RPCA) analyzing these heterogeneous data, a modified RPCA-based method, Block-Constraint Robust Principal Component Analysis (BCRPCA), is proposed. Since different categories data have different peculiarities, BCRPCA enforces different constraint intensities on different categories to improve the performance of RPCA. Firstly, the observation matrix of TCGA data is decomposed into two adding matrices A and S by using BCRPCA. Secondly, we use a ranking scheme to evaluate every feature and project these features to the genes. Then, the genes with high scores will be identified as differentially expressed ones. The main contributions of this paper are as following: firstly, it proposes, for the first time, the idea and method of BCRPCA to model TCGA data; secondly, it provides a BCRPCA-based framework for integrated analysis of TCGA data. The results show that our method is effective and suitable to analyze these data.
机译:癌症基因组图谱(TCGA)数据集为我们提供了更多机会,可以系统地和全面地了解癌症形成,生长和转移的某些生物学机制。由于TCGA数据集包含异构数据,因此从中挖掘一些有意义的信息是生物信息学的瓶颈之一。为了提高鲁棒主成分分析(RPCA)分析这些异构数据的性能,提出了一种基于RPCA的改进方法,即块约束鲁棒主成分分析(BCRPCA)。由于不同类别的数据具有不同的特性,因此BCRPCA对不同类别实施不同的约束强度,以提高RPCA的性能。首先,使用BCRPCA将TCGA数据的观测矩阵分解为两个加法矩阵A和S。其次,我们使用排名方案来评估每个特征并将这些特征投射到基因上。然后,将高分基因鉴定为差异表达基因。本文的主要贡献如下:首先,首次提出了BCRPCA建模TCGA数据的思想和方法。其次,它为TCGA数据的综合分析提供了一个基于BCRPCA的框架。结果表明我们的方法是有效的并且适合于分析这些数据。

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